Qi Lin, Liu Jianyu, Song Xuhui, Wang Xinle, Yang Mengmeng, Cao Xinyi, He Yan
College of Management, Hainan Medical University, Haikou, China.
College of Public Health, Zhengzhou University, Zhengzhou, China.
Front Public Health. 2025 Mar 11;13:1518472. doi: 10.3389/fpubh.2025.1518472. eCollection 2025.
The purpose of this study is to develop predictive models for frailty risk among community-dwelling older adults in eastern China using machine learning techniques. This approach aims to facilitate early detection of high-risk individuals and inform the design of tailored interventions, with the ultimate goals of enhancing quality of life and mitigating frailty progression in the older adult population.
This study involved 1,263 participants aged 60 years or older, who were selected through stratified cluster sampling. Frailty was assessed using the Tilburg Frailty Indicator (TFI), which encompasses physical, psychological, and social dimensions. Predictive models were constructed using decision trees, random forests, and XGBoost algorithms, implemented in R software (version 4.4.2). The performance of these models was evaluated using metrics such as the area under the receiver operating characteristic curve (AUC), ROC curves, and confusion matrices.
The results showed that 64.77% of the older adult were physically weak. Body mass index (BMI), living arrangements, frequency of visits and smoking status are the main factors contributing to frailty. When comparing predictive model metrics, random forest and extreme Gradient Lift (XGBoost) outperform decision tree models in terms of accuracy and applicability.
Older adults living in communities in eastern China showed slight frailty, and many factors influenced their frailty scores. Random forest and XGBoost models outperform decision tree models in predicting frailty in older adults, so identifying high-risk individuals early and developing personalized interventions can help slow the development of frailty and improve quality of life in older adults.
本研究旨在运用机器学习技术,为中国东部社区居住的老年人开发衰弱风险预测模型。该方法旨在促进对高危个体的早期检测,并为量身定制的干预措施设计提供信息,最终目标是提高老年人的生活质量并减缓衰弱进程。
本研究纳入了1263名60岁及以上的参与者,通过分层整群抽样进行选取。使用蒂尔堡衰弱指标(TFI)评估衰弱情况,该指标涵盖身体、心理和社会维度。使用决策树、随机森林和XGBoost算法构建预测模型,并在R软件(版本4.4.2)中实现。使用受试者工作特征曲线下面积(AUC)、ROC曲线和混淆矩阵等指标评估这些模型的性能。
结果显示,64.77%的老年人身体虚弱。体重指数(BMI)、居住安排、就诊频率和吸烟状况是导致衰弱的主要因素。在比较预测模型指标时,随机森林和极端梯度提升(XGBoost)在准确性和适用性方面优于决策树模型。
中国东部社区居住的老年人存在轻微衰弱,且多种因素影响其衰弱评分。随机森林和XGBoost模型在预测老年人衰弱方面优于决策树模型,因此早期识别高危个体并制定个性化干预措施有助于减缓老年人衰弱的发展并提高其生活质量。